| |||||||||||
HuMoComp 2014 : The Second International Workshop on Human Mobility Computing | |||||||||||
Link: http://staff.itee.uq.edu.au/kevinz/humocomp2014 | |||||||||||
| |||||||||||
Call For Papers | |||||||||||
In the past few years the data capturing aspects of human mobility become widely available in the real world, e.g., mobile phone records, GPS traces of vehicles and pedestrians, ticketing logs of public transportation, geo-tagged Web objects (such as online check-ins, geo-tagged photos and videos), as well as records from roadside sensor networks. This has given a new empirically driven momentum to the human mobility computing as an emerging concept. Far beyond statistical analytics of human motion history, human mobility computing aims to acquire more insightful knowledge by integrating a variety of heterogeneous data sources and applying a range of techniques in multiple disciplines such as computer science, Anthropology, social science, and physics. As a result, we can gain deeper understanding on many aspects of human daily life, including the activities, behaviours, habits, preferences, lifestyles and intentions. On top of that, we have better chance to develop effective strategies and build intelligent systems that play critical roles in areas like public health, traffic engineering, urban planning and economic forecasting.
This workshop provides the professionals, researchers, engineers and practitioners who are interested in acquiring, managing, mining and understanding human mobility with a platform where they can discuss issues and challenges, share the state-of-the-art of the development and applications, present their ideas and contributions, and set future directions in emerging innovative research for human mobility computing. Topics of interest include, but not limited to, the following aspects: New platforms and applications for sensing and acquiring human mobility data Integration of heterogeneous human mobility data sources Theoretic and/or empirical modelling of human mobility data Discovery of human mobility patterns (e.g., anomaly, event, etc.) Data quality and uncertainty issues study on human mobility data Efficient indexing and processing for large scale vehicle/pedestrian trajectories Activity and behaviour mining from human mobility data Social behaviour analysis on location-based social networks Semantic annotation and tagging for human moving trajectories Intelligent POI recommendation system Real-time analysis for streaming trajectory data Human mobility data compression Human mobility computing in the Cloud Privacy issues in human mobility data |
|